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Chapter and Conference Paper
Algorithmic Fairness in Healthcare Data with Weighted Loss and Adversarial Learning
Fairness in terms of various sensitive or protected attributes such as race, gender, age group, etc. has been a subject of great importance in the healthcare domain. Group fairness is considered as one of the ...